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New Nonparametric Rank-Based Tests for Paired Data
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作者 Guogen Shan 《Open Journal of Statistics》 2014年第7期495-503,共9页
We propose a new nonparametric test based on the rank difference between the paired sample for testing the equality of the marginal distributions from a bivariate distribution. We also consider a modification of the n... We propose a new nonparametric test based on the rank difference between the paired sample for testing the equality of the marginal distributions from a bivariate distribution. We also consider a modification of the novel nonparametric test based on the test proposed by Baumgartern, Weiβ, and Schindler (1998). An extensive numerical power comparison for various parametric and nonparametric tests was conducted under a wide range of bivariate distributions for small sample sizes. The two new nonparametric tests have comparable power to the paired t test for the data simulated from bivariate normal distributions, and are generally more powerful than the paired t test and other commonly used nonparametric tests in several important bivariate distributions. 展开更多
关键词 BWS test nonparametric test Paired DATA Power Study RANK DIFFERENCE Wilcoxon SIGNED RANK test
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A Practical Guide to Statistical Tests in the Biomedical Field: From Parametric to Nonparametric, Where and How?
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作者 Adil Gourinda Hicham El Bouri +5 位作者 Faïza Charif Zaynab Mahdi Fadila Bousgheiri Karima Sammoud Saloua Lemrabett Adil Najdi 《Journal of Biosciences and Medicines》 2024年第11期1-14,共14页
Healthcare decisions are based on scientific evidence obtained from medical studies by gathering data and analyzing it to obtain the best results. When analyzing data, biostatistics is a powerful tool, but healthcare ... Healthcare decisions are based on scientific evidence obtained from medical studies by gathering data and analyzing it to obtain the best results. When analyzing data, biostatistics is a powerful tool, but healthcare professionals lack knowledge in this field. This lack of knowledge can manifest itself in situations such as choosing the wrong statistical test for the right situation or applying a statistical test without checking its assumptions, leading to inaccurate results and misleading conclusions. With the help of this “narrative review”, the aim is to bring biostatistics closer to healthcare professionals by answering certain questions: how to describe the distribution of data? how to assess the normality of data? how to transform data? and how to choose between nonparametric and parametric tests? Through this work, our hope is that the reader will be able to choose the right test for the right situation, in order to obtain the most accurate results. 展开更多
关键词 Teaching Statistics Distribution NORMALITY TRANSFORMATION nonparametric test Parametric test
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A Comprehensive Guide for Selecting Appropriate Statistical Tests: Understanding When to Use Parametric and Nonparametric Tests
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作者 Saed Jama Abdi 《Open Journal of Endocrine and Metabolic Diseases》 2023年第4期464-474,共11页
Choosing appropriate statistical tests is crucial but deciding which tests to use can be challenging. Different tests suit different types of data and research questions, so it is important to choose the right one. Kn... Choosing appropriate statistical tests is crucial but deciding which tests to use can be challenging. Different tests suit different types of data and research questions, so it is important to choose the right one. Knowing how to select an appropriate test can lead to more accurate results. Invalid results and misleading conclusions may be drawn from a study if an incorrect statistical test is used. Therefore, to avoid these it is essential to understand the nature of the data, the research question, and the assumptions of the tests before selecting one. This is because there are a wide variety of tests available. This paper provides a step-by-step approach to selecting the right statistical test for any study, with an explanation of when it is appropriate to use it and relevant examples of each statistical test. Furthermore, this guide provides a comprehensive overview of the assumptions of each test and what to do if these assumptions are violated. 展开更多
关键词 Statistical tests Levels of Measurement PARAMETRIC nonparametric Normal Distribution
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A Comprehensive Guide for Selecting Appropriate Statistical Tests: Understanding When to Use Parametric and Nonparametric Tests
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作者 Saed Jama Abdi 《Open Journal of Statistics》 2023年第4期464-474,共11页
Choosing appropriate statistical tests is crucial but deciding which tests to use can be challenging. Different tests suit different types of data and research questions, so it is important to choose the right one. Kn... Choosing appropriate statistical tests is crucial but deciding which tests to use can be challenging. Different tests suit different types of data and research questions, so it is important to choose the right one. Knowing how to select an appropriate test can lead to more accurate results. Invalid results and misleading conclusions may be drawn from a study if an incorrect statistical test is used. Therefore, to avoid these it is essential to understand the nature of the data, the research question, and the assumptions of the tests before selecting one. This is because there are a wide variety of tests available. This paper provides a step-by-step approach to selecting the right statistical test for any study, with an explanation of when it is appropriate to use it and relevant examples of each statistical test. Furthermore, this guide provides a comprehensive overview of the assumptions of each test and what to do if these assumptions are violated. 展开更多
关键词 Statistical tests Levels of Measurement PARAMETRIC nonparametric Normal Distribution
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Nonparametric TOA estimators for low-resolution IR-UWB digital receiver 被引量:1
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作者 Yanlong Zhang Weidong Chen 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2015年第1期26-31,共6页
Nonparametric time-of-arrival(TOA) estimators for impulse radio ultra-wideband(IR-UWB) signals are proposed. Nonparametric detection is obviously useful in situations where detailed information about the statistic... Nonparametric time-of-arrival(TOA) estimators for impulse radio ultra-wideband(IR-UWB) signals are proposed. Nonparametric detection is obviously useful in situations where detailed information about the statistics of the noise is unavailable or not accurate. Such TOA estimators are obtained based on conditional statistical tests with only a symmetry distribution assumption on the noise probability density function. The nonparametric estimators are attractive choices for low-resolution IR-UWB digital receivers which can be implemented by fast comparators or high sampling rate low resolution analog-to-digital converters(ADCs),in place of high sampling rate high resolution ADCs which may not be available in practice. Simulation results demonstrate that nonparametric TOA estimators provide more effective and robust performance than typical energy detection(ED) based estimators. 展开更多
关键词 conditional test nonparametric estimator time-of-arrival(TOA) low-resolution
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Comparison of the Statistical Power of Siegel-Tukey and Savage Tests: A Study with Monte Carlo Simulation
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作者 Elnur Hasan Mikail HakanÇora Sahib Ramazanov 《Economics World》 2025年第2期95-105,共11页
This study presents the results of a Monte Carlo simulation to compare the statistical power of Siegel-Tukey and Savage tests.The main purpose of the study is to evaluate the statistical power of both tests in scenari... This study presents the results of a Monte Carlo simulation to compare the statistical power of Siegel-Tukey and Savage tests.The main purpose of the study is to evaluate the statistical power of both tests in scenarios involving Normal,Platykurtic and Skewed distributions over different sample sizes and standard deviation values.In the study,standard deviation ratios were set as 2,3,4,1/2,1/3 and 1/4 and power comparisons were made between small and large sample sizes.For equal sample sizes,small sample sizes of 5,8,10,12,16 and 20 and large sample sizes of 25,50,75 and 100 were used.For different sample sizes,the combinations of(4,16),(8,16),(10,20),(16,4),(16,8)and(20,10)small sample sizes and(10,30),(30,10),(50,75),(50,100),(75,50),(75,100),(100,50)and(100,75)large sample sizes were examined in detail.According to the findings,the power analysis under variance heterogeneity conditions shows that the Siegel-Tukey test has a higher statistical power than the other nonparametric Savage test at small and large sample sizes.In particular,the Siegel-Tukey test was reported to offer higher precision and power under variance heterogeneity,regardless of having equal or different sample sizes. 展开更多
关键词 nonparametric test statistical power Siegel-Tukey test Savage test Monte Carlo simulation
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综合性高等农业院校本科生数学学习能力的调查研究
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作者 李放歌 洪之川 《高师理科学刊》 2026年第2期72-77,共6页
在教育评价从以知识考核为主转向以能力考查为主的背景下,学习能力评价成为了重要议题。学习能力是学生取得学业成绩的核心要素,而数学作为高等院校重要的公共基础课程,在学生学习能力评价中占据着至关重要的地位。在构建数学学习能力... 在教育评价从以知识考核为主转向以能力考查为主的背景下,学习能力评价成为了重要议题。学习能力是学生取得学业成绩的核心要素,而数学作为高等院校重要的公共基础课程,在学生学习能力评价中占据着至关重要的地位。在构建数学学习能力结构的基础上,运用问卷调查法,依托学生自我评价,采用非参数检验方法,从整体情况、性别、年级、专业、成绩等级等多个维度,对综合性高等农业院校本科生的数学学习情况展开差异性分析,揭示了不同特征大学生群体在数学学习能力上的差异,为大规模个性化教学的开展提供了参考。 展开更多
关键词 数学学习能力 问卷调查 非参数检验 差异性分析
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AVWC-test在生命科学研究中应用效果的评估 被引量:2
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作者 董长垣 陈冬娥 +2 位作者 王圣基 应时 陈晓 《中国病毒学》 CSCD 1994年第4期367-374,共8页
AVWC-tcst是新近发展起来的生物统计方法,它能把非参数资料转变成参数资料进行定量统计分析。本研究进一步从国内外刊物上公开发表的学术论文中精选出了一定数量的研究数据,用AVWC-test方法进行统计处理,并与传统... AVWC-tcst是新近发展起来的生物统计方法,它能把非参数资料转变成参数资料进行定量统计分析。本研究进一步从国内外刊物上公开发表的学术论文中精选出了一定数量的研究数据,用AVWC-test方法进行统计处理,并与传统的非参数统计方法和计量资料统计方法进行同源自身对照,研究了其统计效能。结果清楚地表明:AVWC-test方法是一种应用面广,精确、灵敏、方便的生物统计分析方法,能更好地发掘科学资料的信息,提高研究效率。 展开更多
关键词 AVWC-test 生物统计 生命科学
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Imprecise Probability Method with the Power-Normal Model for Accelerated Life Testing
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作者 YIN Yichao HUANG Hongzhong LIU Zheng 《Journal of Shanghai Jiaotong university(Science)》 EI 2019年第6期805-810,共6页
We present a new nonparametric predictive inference(NPI)method using a power-normal model for accelerated life testing(ALT).Combined with the accelerating link function and imprecise probability theory,the proposed me... We present a new nonparametric predictive inference(NPI)method using a power-normal model for accelerated life testing(ALT).Combined with the accelerating link function and imprecise probability theory,the proposed method is a feasible way to predict the life of the product using ALT failure data.To validate the method,we run a series of simulations and conduct accelerated life tests with real products.The NPI lower and upper survival functions show the robustness of our method for life prediction.This is a continuous research,and some progresses have been made by updating the link function between different stress levels.We also explain how to renew and apply our model.Moreover,discussions have been made about the performance. 展开更多
关键词 accelerated life testing(ALT) power-normal model lower and upper survival functions nonparametric predictive inference(NPI) imprecise probability
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Use of Pearson’s Chi-Square for Testing Equality of Percentile Profiles across Multiple Populations
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作者 William D. Johnson Robbie A. Beyl +3 位作者 Jeffrey H. Burton Callie M. Johnson Jacob E. Romer Lei Zhang 《Open Journal of Statistics》 2015年第5期412-420,共9页
In large sample studies where distributions may be skewed and not readily transformed to symmetry, it may be of greater interest to compare different distributions in terms of percentiles rather than means. For exampl... In large sample studies where distributions may be skewed and not readily transformed to symmetry, it may be of greater interest to compare different distributions in terms of percentiles rather than means. For example, it may be more informative to compare two or more populations with respect to their within population distributions by testing the hypothesis that their corresponding respective 10th, 50th, and 90th percentiles are equal. As a generalization of the median test, the proposed test statistic is asymptotically distributed as Chi-square with degrees of freedom dependent upon the number of percentiles tested and constraints of the null hypothesis. Results from simulation studies are used to validate the nominal 0.05 significance level under the null hypothesis, and asymptotic power properties that are suitable for testing equality of percentile profiles against selected profile discrepancies for a variety of underlying distributions. A pragmatic example is provided to illustrate the comparison of the percentile profiles for four body mass index distributions. 展开更多
关键词 Asymptotic CHI-SQUARE test EQUALITY of PERCENTILES Large Sample test MEDIAN test nonparametric Methods
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A Simple Chi-Square Statistic for Testing Homogeneity of Zero-Inflated Distributions
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作者 William D. Johnson Jeffrey H. Burton +1 位作者 Robbie A. Beyl Jacob E. Romer 《Open Journal of Statistics》 2015年第6期483-493,共11页
Zero-inflated distributions are common in statistical problems where there is interest in testing homogeneity of two or more independent groups. Often, the underlying distribution that has an inflated number of zero-v... Zero-inflated distributions are common in statistical problems where there is interest in testing homogeneity of two or more independent groups. Often, the underlying distribution that has an inflated number of zero-valued observations is asymmetric, and its functional form may not be known or easily characterized. In this case, comparisons of the groups in terms of their respective percentiles may be appropriate as these estimates are nonparametric and more robust to outliers and other irregularities. The median test is often used to compare distributions with similar but asymmetric shapes but may be uninformative when there are excess zeros or dissimilar shapes. For zero-inflated distributions, it is useful to compare the distributions with respect to their proportion of zeros, coupled with the comparison of percentile profiles for the observed non-zero values. A simple chi-square test for simultaneous testing of these two components is proposed, applicable to both continuous and discrete data. Results of simulation studies are reported to summarize empirical power under several scenarios. We give recommendations for the minimum sample size which is necessary to achieve suitable test performance in specific examples. 展开更多
关键词 Asymptotic CHI-SQUARE test EQUALITY of QUANTILES Large Sample test nonparametric test Percentile Profiles ZERO-INFLATED DISTRIBUTIONS
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Comparison of Two Sample Tests Using Both Relative Efficiency and Power of Test
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作者 Edith Uzoma Umeh Nkiru Obioma Eriobu 《Open Journal of Statistics》 2016年第2期331-345,共15页
This paper, comparison of two sample tests, is motivated by the fact that in the test of significant difference between two independent samples, numerous methods can be adopted;each may lead to significant different r... This paper, comparison of two sample tests, is motivated by the fact that in the test of significant difference between two independent samples, numerous methods can be adopted;each may lead to significant different results;this implies that wrong choice of test statistic could lead to erroneous conclusion. To prevent misleading information, there is a need for proper investigation of some selected methods for test of significant difference between variables/subjects most especially, independent samples. The paper examines the efficiency and sensitivity of four test statistics to ascertain which test performs better. Based on the results, the relative efficiency favours median test as being more efficient than modified median test for both symmetric and asymmetric distributions. In terms of power of test, median test is more sensitive than Modified Median (MMED) test since it has higher power irrespective of the sample sizes for both symmetric and asymmetric distribution. In terms of relative efficiency for asymmetric distribution Modified Mann-Whitney U test is more efficient than Mann-Whitney U test (MMWU), and then for symmetric distribution, Mann-Whitney U test (MMWU) is more efficient than Modified Mann-Whitney in sample size of 5;but for other sample sizes considered Modified Mann-Whitney U test (MMWU) is better than Mann-Whitney. Using power of test for both symmetric and asymmetric distributions, Mann-Whitney is more sensitive than Modified Mann-Whitney U test (MMWU) because it has higher power. 展开更多
关键词 ASYMMETRIC SYMMETRIC nonparametric test Two Sample tests Power of test Relative Efficiency
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Hypothesis Testing of Population Percentiles via the Wald Test with Bootstrap Variance Estimates
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作者 William D. Johnson Jacob E. Romer 《Open Journal of Statistics》 2016年第1期14-24,共11页
Testing the equality of percentiles (quantiles) between populations is an effective method for robust, nonparametric comparison, especially when the distributions are asymmetric or irregularly shaped. Unlike global no... Testing the equality of percentiles (quantiles) between populations is an effective method for robust, nonparametric comparison, especially when the distributions are asymmetric or irregularly shaped. Unlike global nonparametric tests for homogeneity such as the Kolmogorv-Smirnov test, testing the equality of a set of percentiles (i.e., a percentile profile) yields an estimate of the location and extent of the differences between the populations along the entire domain. The Wald test using bootstrap estimates of variance of the order statistics provides a unified method for hypothesis testing of functions of the population percentiles. Simulation studies are conducted to show performance of the method under various scenarios and to give suggestions on its use. Several examples are given to illustrate some useful applications to real data. 展开更多
关键词 BOOTSTRAP Hypothesis testing nonparametric Methods Percentile Profiles Wald test
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Calculation of Two-Tailed Exact Probability in the Wald-Wolfowitz One-Sample Runs Test
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作者 José Moral De La Rubia 《Journal of Data Analysis and Information Processing》 2024年第1期89-114,共26页
The objectives of this paper are to demonstrate the algorithms employed by three statistical software programs (R, Real Statistics using Excel, and SPSS) for calculating the exact two-tailed probability of the Wald-Wo... The objectives of this paper are to demonstrate the algorithms employed by three statistical software programs (R, Real Statistics using Excel, and SPSS) for calculating the exact two-tailed probability of the Wald-Wolfowitz one-sample runs test for randomness, to present a novel approach for computing this probability, and to compare the four procedures by generating samples of 10 and 11 data points, varying the parameters n<sub>0</sub> (number of zeros) and n<sub>1</sub> (number of ones), as well as the number of runs. Fifty-nine samples are created to replicate the behavior of the distribution of the number of runs with 10 and 11 data points. The exact two-tailed probabilities for the four procedures were compared using Friedman’s test. Given the significant difference in central tendency, post-hoc comparisons were conducted using Conover’s test with Benjamini-Yekutielli correction. It is concluded that the procedures of Real Statistics using Excel and R exhibit some inadequacies in the calculation of the exact two-tailed probability, whereas the new proposal and the SPSS procedure are deemed more suitable. The proposed robust algorithm has a more transparent rationale than the SPSS one, albeit being somewhat more conservative. We recommend its implementation for this test and its application to others, such as the binomial and sign test. 展开更多
关键词 RANDOMNESS nonparametric test Exact Probability Small Samples QUANTILES
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Study on Key Biological Indicators of Diabetes Based on Statistical Tests
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作者 Shuaibin Yang 《Journal of Clinical and Nursing Research》 2024年第7期267-273,共7页
Normality testing is a fundamental hypothesis test in the statistical analysis of key biological indicators of diabetes.If this assumption is violated,it may cause the test results to deviate from the true value,leadi... Normality testing is a fundamental hypothesis test in the statistical analysis of key biological indicators of diabetes.If this assumption is violated,it may cause the test results to deviate from the true value,leading to incorrect inferences and conclusions,and ultimately affecting the validity and accuracy of statistical inferences.Considering this,the study designs a unified analysis scheme for different data types based on parametric statistical test methods and non-parametric test methods.The data were grouped according to sample type and divided into discrete data and continuous data.To account for differences among subgroups,the conventional chi-squared test was used for discrete data.The normal distribution is the basis of many statistical methods;if the data does not follow a normal distribution,many statistical methods will fail or produce incorrect results.Therefore,before data analysis and modeling,the data were divided into normal and non-normal groups through normality testing.For normally distributed data,parametric statistical methods were used to judge the differences between groups.For non-normal data,non-parametric tests were employed to improve the accuracy of the analysis.Statistically significant indicators were retained according to the significance index P-value of the statistical test or corresponding statistics.These indicators were then combined with relevant medical background to further explore the etiology leading to the occurrence or transformation of diabetes status. 展开更多
关键词 Diabetes diagnosis Statistical test nonparametric statistics Normality test
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Monetary policy shocks and multi‑scale positive and negative bubbles in an emerging country:the case of India
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作者 Oguzhan Cepni Rangan Gupta +1 位作者 Jacobus Nel Joshua Nielsen 《Financial Innovation》 2025年第1期1109-1133,共25页
We employ the Multi-Scale Log-Periodic Power Law Singularity Confidence Indicator(MS-LPPLS-CI)approach to identify positive and negative bubbles in the short-,medium,and long-term for the Indian stock market,using wee... We employ the Multi-Scale Log-Periodic Power Law Singularity Confidence Indicator(MS-LPPLS-CI)approach to identify positive and negative bubbles in the short-,medium,and long-term for the Indian stock market,using weekly data from November 2003 to December 2020.We use a nonparametric causality-in-quantiles approach to analyze the predictive impact of monetary policy shocks on bubble indicators.We find,in general,strong evidence of predictability across the entire conditional distribution for the two monetary policy shock factors,with stronger impacts for negative bubbles.Our findings have critical implications for the Reserve Bank of India,academics,and investors. 展开更多
关键词 Multi-scale positive and negative bubbles Monetary policy shocks nonparametric causality-in-quantiles test INDIA
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Testing High-Dimensional Nonparametric Behrens-Fisher Problem
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作者 MENG Zhen LI Na YUAN Ao 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2022年第3期1098-1115,共18页
For high-dimensional nonparametric Behrens-Fisher problem in which the data dimension is larger than the sample size,the authors propose two test statistics in which one is U-statistic Rankbased Test(URT)and another i... For high-dimensional nonparametric Behrens-Fisher problem in which the data dimension is larger than the sample size,the authors propose two test statistics in which one is U-statistic Rankbased Test(URT)and another is Cauchy Combination Test(CCT).CCT is analogous to the maximumtype test,while URT takes into account the sum of squares of differences of ranked samples in different dimensions,which is free of shapes of distributions and robust to outliers.The asymptotic distribution of URT is derived and the closed form for calculating the statistical significance of CCT is given.Extensive simulation studies are conducted to evaluate the finite sample power performance of the statistics by comparing with the existing method.The simulation results show that our URT is robust and powerful method,meanwhile,its practicability and effectiveness can be illustrated by an application to the gene expression data. 展开更多
关键词 Cauchy combination test nonparametric Behrens-Fisher problem rank-based test U-STATISTIC
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A Nonparametric Model Checking Test for Functional Linear Composite Quantile Regression Models
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作者 XIA Lili DU Jiang ZHANG Zhongzhan 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2024年第4期1714-1737,共24页
This paper is focused on the goodness-of-fit test of the functional linear composite quantile regression model.A nonparametric test is proposed by using the orthogonality of the residual and its conditional expectatio... This paper is focused on the goodness-of-fit test of the functional linear composite quantile regression model.A nonparametric test is proposed by using the orthogonality of the residual and its conditional expectation under the null model.The proposed test statistic has an asymptotic standard normal distribution under the null hypothesis,and tends to infinity in probability under the alternative hypothesis,which implies the consistency of the test.Furthermore,it is proved that the test statistic converges to a normal distribution with nonzero mean under a local alternative hypothesis.Extensive simulations are reported,and the results show that the proposed test has proper sizes and is sensitive to the considered model discrepancies.The proposed methods are also applied to two real datasets. 展开更多
关键词 Composite quantile regression consistent test functional data nonparametric test quadratic form
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The abstract of doctoral dissertation‘Some research on hypothesis testing and nonparametric variable screening problems for high dimensional data’
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作者 Yongshuai Chen Hengjian Cui 《Statistical Theory and Related Fields》 2020年第2期228-229,共2页
In this thesis,we construct test statistic for association test and independence test in high dimension,respectively,and study the corresponding theoretical properties under some regularity conditions.Meanwhile,we pro... In this thesis,we construct test statistic for association test and independence test in high dimension,respectively,and study the corresponding theoretical properties under some regularity conditions.Meanwhile,we propose a nonparametric variable screening procedure for sparse additive model with multivariate response in untra-high dimension and established some screening properties. 展开更多
关键词 High-dimensional test independence test distance correlation power enhancement association test U-STATISTIC nonparametric variable screening additive model
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非参数统计在白砂糖色值测定能力验证中的应用
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作者 邓倩南 陈其钊 +2 位作者 肖爱玲 王桂华 李家威 《甘蔗糖业》 2025年第6期78-83,共6页
探讨了非参数统计方法在白砂糖色值测定能力验证中的应用价值。通过实际制备样品并依据CNAS-GL003指南,分别采用参数方法(F检验、t检验)与非参数方法(Kruskal-Wallis H检验、Mann-Whitney U检验)对样品的均匀性和稳定性进行统计评估。... 探讨了非参数统计方法在白砂糖色值测定能力验证中的应用价值。通过实际制备样品并依据CNAS-GL003指南,分别采用参数方法(F检验、t检验)与非参数方法(Kruskal-Wallis H检验、Mann-Whitney U检验)对样品的均匀性和稳定性进行统计评估。结果表明,在稳定性分析中2类方法结论一致,但在均匀性检验中非参数方法识别出参数方法未检出的变异,提示样品存在不均匀性。进一步将样品间变异纳入Z比分数修正后,发现传统Z值与修正值z'之间存在5%~9%的偏差,表明显著影响能力评价准确性。研究表明,非参数方法对非连续、偏态或含离群值的数据具有更强稳健性,可作为参数方法的重要补充,提高能力验证统计结果的科学性与可靠性。 展开更多
关键词 白砂糖 色值 非参数统计 能力验证
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